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Main Authors: Ye, Miao, Wang, Ziheng, Jiang, Qiuxiang, Xue, Xingsi, Liu, Wenxi, Ning, Yu, Zhu, Cheng
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.11951
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author Ye, Miao
Wang, Ziheng
Jiang, Qiuxiang
Xue, Xingsi
Liu, Wenxi
Ning, Yu
Zhu, Cheng
author_facet Ye, Miao
Wang, Ziheng
Jiang, Qiuxiang
Xue, Xingsi
Liu, Wenxi
Ning, Yu
Zhu, Cheng
contents Existing anomaly detection methods for Wireless Sensor Networks (WSNs) generally suffer from insufficient extraction of spatio-temporal correlation features, reliance on either timedomain or frequencydomain information alone, and high computational overhead. To address these limitations, this paper proposes a topology-enhanced spatio-temporal feature fusion anomaly detection method, TE-MSTAD. First, building upon the RWKV model with linear attention mechanisms, a Cross modal Feature Extraction (CFE) module is introduced to fully extract spatial correlation features among multiple nodes while reducing computational resource consumption. Second, a strategy is designed to construct an adjacency matrix by jointly learning spatial correlation from time-frequency domain features. Different graph neural networks are integrated to enhance spatial correlation feature extraction, thereby fully capturing spatial relationships among multiple nodes. Finally, a dualbranch network TE-MSTAD is designed for time-frequency domain feature fusion, overcoming the limitations of relying solely on the time or frequency domain to improve WSN anomaly detection performance. Testing on both public and realworld datasets demonstrates that the TE-MSTAD model achieves F1 scores of 92.52% and 93.28%, respectively, exhibiting superior detection performance and generalization capabilities compared to existing methods.
format Preprint
id arxiv_https___arxiv_org_abs_2601_11951
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle A method for detecting spatio-temporal correlation anomalies of WSN nodes based on topological information enhancement and time-frequency feature extraction
Ye, Miao
Wang, Ziheng
Jiang, Qiuxiang
Xue, Xingsi
Liu, Wenxi
Ning, Yu
Zhu, Cheng
Networking and Internet Architecture
Existing anomaly detection methods for Wireless Sensor Networks (WSNs) generally suffer from insufficient extraction of spatio-temporal correlation features, reliance on either timedomain or frequencydomain information alone, and high computational overhead. To address these limitations, this paper proposes a topology-enhanced spatio-temporal feature fusion anomaly detection method, TE-MSTAD. First, building upon the RWKV model with linear attention mechanisms, a Cross modal Feature Extraction (CFE) module is introduced to fully extract spatial correlation features among multiple nodes while reducing computational resource consumption. Second, a strategy is designed to construct an adjacency matrix by jointly learning spatial correlation from time-frequency domain features. Different graph neural networks are integrated to enhance spatial correlation feature extraction, thereby fully capturing spatial relationships among multiple nodes. Finally, a dualbranch network TE-MSTAD is designed for time-frequency domain feature fusion, overcoming the limitations of relying solely on the time or frequency domain to improve WSN anomaly detection performance. Testing on both public and realworld datasets demonstrates that the TE-MSTAD model achieves F1 scores of 92.52% and 93.28%, respectively, exhibiting superior detection performance and generalization capabilities compared to existing methods.
title A method for detecting spatio-temporal correlation anomalies of WSN nodes based on topological information enhancement and time-frequency feature extraction
topic Networking and Internet Architecture
url https://arxiv.org/abs/2601.11951